Assessing long-term climate change impact on spatiotemporal changes of groundwater level using autoregressive-based and ensemble machine learning models

被引:17
|
作者
Nourani, Vahid [1 ,2 ,3 ,4 ]
Tapeh, Ali Hasanpour Ghareh [2 ]
Khodkar, Kasra [2 ]
Huang, Jinhui Jeanne [1 ,3 ]
机构
[1] Univ Tabriz, Ctr Excellence Hydroinformat, 29 Bahman Ave, Tabriz, Iran
[2] Univ Tabriz, Fac Civil Engn, 29 Bahman Ave, Tabriz, Iran
[3] Nankai Univ, Coll Environm Sci & Engn, Sino Canada Joint R&D Ctr Water& Environm Safety, Tianjin 300071, Peoples R China
[4] Near East Univ, Fac Civil & Environm Engn, Near East Blvd,via Mersin 10, TR-99138 Nicosia, Turkiye
基金
国家重点研发计划;
关键词
Groundwater; GCM; Machine learning; K -means clustering; Ardabil plain; FLUCTUATIONS;
D O I
10.1016/j.jenvman.2023.117653
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
To evaluate the long-term climate change impacts on groundwater fluctuations of the Ardabil plain, Iran, a groundwater level (GWL) modeling was proposed in this study. Accordingly, the outputs of Global Climate Models (GCMs) under the sixth report of Coupled Model Intercomparison Project (CMIP6) and future scenario of the Shared Socioeconomic Pathway 5-8.5 (SSP5-8.5), were used as climate change forcing to the Machine learning (ML) models. The GCM data were first downscaled and projected for the future via Artificial Neural Networks (ANNs). Based on the results, compared to 2014 (the last year of the base period), the mean annual temperature may increase by 0.8 degrees C per decade until 2100. On the other hand, the mean precipitation may decrease by about 8% compared to the base period. Then, the centroid wells of clusters were modeled by Feedforward Neural Network (FFNN), examining different input combination sets to simulate both autoregressive and non-autoregressive models. Since each of the ML models can extract different kinds of information from a dataset, after finding the dominant input set via FFNN, GWL time series were modeled via various ML methods. The modeling results indicated that the ensemble of shallow ML models could lead to a 6% more accurate outcome than the individual shallow ML models, and 4% than the deep learning models. Also, the simulation results for future GWLs illustrated that temperature can impact groundwater oscillations directly, whereas precipitation may not have uniform impacts on the GWLs. The uncertainty evolving in the modeling process was quantified and observed to be in acceptable range. Modeling results showed that the main reason for the declining GWL in the Ardabil plain could be primarily linked to the excessive exploitation of the water table, while climate change impact could be also notable.
引用
收藏
页数:14
相关论文
共 48 条
  • [1] Assessing the impact of climate change on groundwater level changes using ensemble models
    Stephen Afrifa
    Tao Zhang
    Peter Appiahene
    Xin Zhao
    Vijayakumar Varadarajan
    Thomas Atta-Darkwa
    Yanzhang Geng
    Mensah Samuel Yaw
    Sustainable Water Resources Management, 2025, 11 (3)
  • [2] Assessing the Impact of Climate Change on Groundwater Resources Using Groundwater Flow Models
    Elci, Alper
    CLIMATE CHANGE AND ITS EFFECTS ON WATER RESOURCES: ISSUES OF NATIONAL AND GLOBAL SECURITY, 2011, : 63 - 75
  • [3] Assessing the effect of climate change on drought and runoff using a machine learning models
    Jahangiri, E.
    Motamedvaziri, B.
    Kiadaliri, H.
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL SCIENCE AND TECHNOLOGY, 2025, 22 (04) : 2205 - 2228
  • [4] Impact of Climate Change on Groundwater Level Changes: An Evaluation Based on Deep Neural Networks
    Afrifa, Stephen
    Zhang, Tao
    Appiahene, Peter
    Zhao, Xin
    Varadarajan, Vijayakumar
    Atta-Darkwah, Thomas
    Geng, Yanzhang
    Gyamfi, Daniel
    Gyening, Rose-Mary Owusuaa Mensah
    APPLIED COMPUTATIONAL INTELLIGENCE AND SOFT COMPUTING, 2025, 2025 (01)
  • [5] Machine learning–based assessment of long-term climate variability of Kerala
    Anjali Vijay
    K. Varija
    Environmental Monitoring and Assessment, 2022, 194
  • [6] Prediction of Long-Term Stroke Recurrence Using Machine Learning Models
    Abedi, Vida
    Avula, Venkatesh
    Chaudhary, Durgesh
    Shahjouei, Shima
    Khan, Ayesha
    Griessenauer, Christoph J.
    Li, Jiang
    Zand, Ramin
    JOURNAL OF CLINICAL MEDICINE, 2021, 10 (06) : 1 - 16
  • [7] Forecasting of Groundwater Level Using Ensemble Hybrid Wavelet-Self-adaptive Extreme Learning Machine-Based Models
    Yosefvand, Fariborz
    Shabanlou, Saeid
    NATURAL RESOURCES RESEARCH, 2020, 29 (05) : 3215 - 3232
  • [8] Long-term Power Generation Prediction in Photovoltaics Using Machine Learning-based Models
    Colbu, Stefania-Cristiana
    Bancila, Daniel-Marian
    Popescu, Dumitru
    ROMANIAN JOURNAL OF INFORMATION SCIENCE AND TECHNOLOGY, 2025, 28 (01): : 39 - 50
  • [9] Machine learning-based assessment of long-term climate variability of Kerala
    Vijay, Anjali
    Varija, K.
    ENVIRONMENTAL MONITORING AND ASSESSMENT, 2022, 194 (07)
  • [10] Groundwater level reconstruction using long-term climate reanalysis data and deep neural networks
    Chidepudi, Sivarama Krishna Reddy
    Massei, Nicolas
    Jardani, Abderrahim
    Henriot, Abel
    JOURNAL OF HYDROLOGY-REGIONAL STUDIES, 2024, 51